2 research outputs found
El uso de bloques de imagen en el dominio espacial como una vĂa robusta de estenografĂa
Steganography is a way to convey secret communication, with rapid electronic communication and high demand of using the internet, steganography has become a wide field of research and discussion. In this paper a new approach for hiding information in cover image proposed in spatial domain, the proposed approach divides the host image into blocks of size (8x8) pixels and message bits are embeds into the pixels of a cover image. The 64-pixel values of each block converted to be represented in binary system and compared with corresponding secret data bits for finding the matching and hold 6-pixels. The search process performed by comparing each secret data bit (8-bits) with created binary plane at the cover image, if matching is found the last row of the created binary plane which is (LSB) is modified to indicate the location of the matched bits sequence “which is the secret data” and number of the row, if matching is not found in all 7th rows the secret sequence is copied in to the corresponding 8th row location.The payload of this technique is 6 pixels’ message (48-bits) in each block. In the experiments secret messages are randomly embedded into different images. The quality of the stego-image from which the original text message is extracted is not affected at all. For validation of the presented mechanism, the capacity, the circuit complexity, and the measurement of distortion against steganalysis is evaluated using the peak-signal-to-noise ratio (PSNR) are analyzed
A Novel Poisoned Water Detection Method Using Smartphone Embedded Wi-Fi Technology and Machine Learning Algorithms
Water is a necessary fluid to the human body and automatic checking of its
quality and cleanness is an ongoing area of research. One such approach is to
present the liquid to various types of signals and make the amount of signal
attenuation an indication of the liquid category. In this article, we have
utilized the Wi-Fi signal to distinguish clean water from poisoned water via
training different machine learning algorithms. The Wi-Fi access points (WAPs)
signal is acquired via equivalent smartphone-embedded Wi-Fi chipsets, and then
Channel-State-Information CSI measures are extracted and converted into feature
vectors to be used as input for machine learning classification algorithms. The
measured amplitude and phase of the CSI data are selected as input features
into four classifiers k-NN, SVM, LSTM, and Ensemble. The experimental results
show that the model is adequate to differentiate poison water from clean water
with a classification accuracy of 89% when LSTM is applied, while 92%
classification accuracy is achieved when the AdaBoost-Ensemble classifier is
applied